Senior Software Engineer, Generative Ai, Core ML

Google Google · Big Tech · Mountain View, CA +1

This role focuses on engineering and productionizing AI agents, building horizontal infrastructure for their autonomous learning and improvement, and scaling optimization tools to address the 'GenAI engineering gap'. The goal is to transform agent development into an engineering discipline for high-quality, reliable, and efficient agents.

What you'd actually do

  1. Generalize horizontal tools, including a plug-in Knowledge Store and a Self-Reflection module, into reusable services that any agent can adopt to enable automated learning and improvement.
  2. Apply validated design principles to transition deterministic logic from monolithic prompts into efficient, code-based workflows that maximize reasoning value and ensure precise context control.
  3. Conduct deep architectural reviews and automated trace scanning for high-impact agents to eliminate structural inefficiencies and redundant tool calls in multi-turn reasoning chains.
  4. Extend automated prompt optimization frameworks to support multi-step workflows, enabling systematic improvement of both efficiency and quality across the agent ecosystem.
  5. Implement code-level safety enforcements and structured tool return patterns within the agent platform to ensure reliability and correctness on deterministic subtasks.

Skills

Required

  • software development
  • ML application (NLP, computer vision, Speech/audio)
  • ML productionization or infrastructure optimization
  • building Generative AI or agentic applications

Nice to have

  • technical leadership role
  • core Generative AI modeling
  • leading Generative AI model productionization or infrastructure optimization

What the JD emphasized

  • productionize horizontal infrastructure
  • generalized Knowledge Store libraries
  • self-reflection modules
  • enable agents to learn and improve autonomously
  • apply core design principles
  • lead deep audits of high-impact agents
  • extract deterministic logic from monolithic prompts into efficient, code-based workflows
  • scale automated prompt optimization
  • trace scanning tools
  • systematically eliminate waste
  • solve the "GenAI engineering gap"
  • bridge the gap between experimental prototypes and scalable production infrastructure
  • agent ecosystem
  • multi-turn reasoning chains
  • code-level safety enforcements
  • structured tool return patterns

Other signals

  • productionizing AI agents
  • horizontal infrastructure for agents
  • autonomous learning for agents
  • scaling automated prompt optimization
  • agent ecosystem